Article ID Journal Published Year Pages File Type
530144 Pattern Recognition 2012 19 Pages PDF
Abstract

The attributes describing a data set may often be arranged in meaningful subsets, each of which corresponds to a different aspect of the data. An unsupervised algorithm (SCAD) that simultaneously performs fuzzy clustering and aspects weighting was proposed in the literature. However, SCAD may fail and halt given certain conditions. To fix this problem, its steps are modified and then reordered to reduce the number of parameters required to be set by the user. In this paper we prove that each step of the resulting algorithm, named ASCAD, globally minimizes its cost-function with respect to the argument being optimized. The asymptotic analysis of ASCAD leads to a time complexity which is the same as that of fuzzy c-means. A hard version of the algorithm and a novel validity criterion that considers aspect weights in order to estimate the number of clusters are also described. The proposed method is assessed over several artificial and real data sets.

► We improve a clustering algorithm which does aspects weighting automatically. ► This gives rise to hard and fuzzy clustering algorithms. ► We propose a validity criterion to the context of aspects weighting. ► The methods are assessed over several artificial and real data sets. ► The proposed methods performed better than classical ones.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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